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Design and Simulation of a Distributed PV System forPennsylvania State University
EME 580 May 3 2010
Submitted by
Oladipo Ositelu
Ruveyda Cetiner
Mesude Bayrakci
Charith Tammineedi
Vasudev Jagarlamudi
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Table of Contents
1. Acknowledgement 4
2. Introduction 5
3. What are RECs 6
4. Penn States Energy Program 6
4.1 Penn States Energy Consumption Facts and Figures 7
4.1.1 Penn States Energy Consumption Trends 7
4.1.2 Penn States Top Ten Energy Consuming Buildings 8
4.1.3 Energy Consumption Sorted by Building Type 9
4.2 Penn State's Procurement of Renewable Power 9
4.3 Pennsylvania Alternate Energy Portfolio Standards 104.3.1 Feasibility study for Penn States Voluntary compliance 12
5. Solar Resource Assessment 13
5.1 NREL Data Solar Maps 135.1.1 PV Solar Resource in US 145.1.2 Concentrated Solar Resource in US 155.1.3 Concentrated Solar Resource in PA 15
5.2 SMARTS 165.3 SURFRAD Solar Radiation Network 17
5.4 TMY (Typical Meteorological Year) Data 18
6. PV Technologies 19
6.1 What are Solar Cells 196.1.1 First Generation Photovoltaics 196.1.2 Second Generation Photovoltaics 196.1.3 Concentrated Photovoltaics 20
6.2 Factors affecting PV choice 21
7. Site Survey 238. Dynamic Simulation of PV systems 24
9. Utility Interconnection 25
9.1 Issues with Grid Connection 25
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3. What Are RECs?
RECs represent the environmental and other non-power attributes of renewable electricitygeneration and are a component of all renewable electricity products. A REC is created when
one (net) megawatt hour of electricity is generated from an eligible renewable energy resource.RECs are unbundled environmental commodity, and therefore may be sold separately, from theunderlying electricity generated. RECs embody the positive environmental impacts created byrenewable energy production and convey these benefits to the REC owner [1].
The RECs can be used by utilities to show their compliance to their respective alternate energyportfolio standard. The RECs are created to introduce more renewable electricity into the grid.One of its advantages is that it monetizes value of attributes separate from commodity electricity.So when a third party (other than a renewable energy generator and utility) purchases RECs theyforce more electricity into the grid as the utility has to purchase RECs elsewhere to meet itscompliance standards. Another one of its advantages is that can be sold across geographic
boundaries. This is beneficial for the renewable energy generator. RECS are not subject totransmission constraints and can be purchased by anyone across the country. RECs also allowconsumers to support renewables, even if their suppliers dont provide green power options.They also enable small, distributed projects to benefit by selling RECs.
There is currently a debate as to what extent does the purchase of RECs actually transfer theemission reductions to the buyer. In fact one opinion is that generators that sell RECs are nottransferring emission reductions, since they are unlikely to have ownership or the ability toquantify reductions using a commonly accepted standard [2].
4. Penn State's Energy Program
Understanding Penn States energy consumption is the first step to designing any onsite energysystems that can offset the electricity demand. In this section we looked into the energyconsumption figures and trends for Penn State University Park. We have also looked into thecategories of buildings and their energy consumption profile. This section of our literaturereview has been compiled using Office of the Physical Plant Data [3].
The University Park campus is the largest campus within The Pennsylvania State Universitysystem. The University Park campus covers over 15,000 acres of land in the Centre Countyregion. Currently, the enrollment for this campus alone is 44,406 students. The University Parkcampus has a total of 657 major and minor facilities for academic, research, office, residential,multi-purpose, and other services.
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4.1Penn States Energy Consumption Facts and Figures
Annual Energy Consumption at all Penn State locations for the 2008/2009 Fiscal Year is414,000,000 KWH of Electricity, 560,000 MCF of Natural Gas and 74,000 Tons of Coal.However over 75% of electricity consumption is at the University Park campus. The University
Park campus alone consumes 315,000,000 KWH of Electricity, 292,000 MCF of Natural Gasand 74,000 Tons of Coal. Our initial goal is to establish the percentage of this electricity demandthat can be offset by on site solar PV.
Campus Energy Consumption from all locations is responsible for the following estimatedannual quantities of greenhouse gases [3].Penn State emits 650,000 tons of Carbon Dioxide,2,800 tons of Sulfur Oxides and 1,500 tons of Nitrogen Oxide. It is within the scope of thisproject to check what percentage of the Carbon Dioxide emission can be reduced by installingonsite PV systems at the University Park campus.
4.1.1 Penn States Energy Consumption Trends
Fig 4.1 Annual trend charts illustrating the growth in energy consumption for the years1988-89 through 2004-05(Onsite data)
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Fig 4.2 University Park Monthly Electricity Consumption Chart
It can be seen that from fig4.1 and fig 4.2 that there is clear growth in Penn States energyconsumption over the past 20 years. Over the recent years the rate of growth has however sloweddue to many energy conservation measures put in place by the University.
4.1.2 Penn States Top Ten Energy Consuming Buildings
Table 4.1 Buildings Ranked by Energy Consumption in MMBTU (million BTU) for FY2004/2005
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4.1.3 Energy Consumption Sorted by Building Type
Table 4.2 Energy consumption of buildings in each category has beenaveraged for the year FY 2004/2005
BuildingType
Avg
MMBTU/SF
Maintenance 102.5
Production 5.627
Classroom 0.43
Dining/StudentUnion 0.342
Multipurpose 0.194
Hotel/Conference 0.191
Athletic 0.181
Libary 0.181
Auditorium 0.165
Research
0.163
Health 0.146
Office 0.117
Museum 0.085
Miscellanous 0.065
Storage/Warehouse 0.058
Residence 0.033
Energy consumption profiles of various categories of buildings have been looked into in order todetermine where the majority of the demand lies. It can be seen from fig 4.2 that classrooms
have a relatively high consumption average compared to research buildings contrary to ourprevious assumption. Energy consumption profiles help us determine what fraction of thebuildings demand can PV systems installed on the respective roofs will power.
4.2 Penn State's Procurement of Renewable Power
Penn State has been purchasing renewable energy since 2001. In 2006, the university executednew contracts for a 5-year term, purchasing an annual supply for 20% of all the campuseselectrical energy consumption [4].
Contracts signed in 2006 include multiple sources of renewable energy with all sources certified
by Green-e Standard for Renewable Energy Products. Penn State's Renewable Energy Portfoliocurrently consists of the following:
Pennsylvania Based Wind Energy - 17,600 MWH National Based Wind Energy - 16,500 MWH National Based Biomass - 16,500 MWH National Based LIHI Hydro - 33,000 MWH Total Purchase - 83,600 MWH
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http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/c1c7fd659eb5cf6c091d00f5f83a970fhttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/c1c7fd659eb5cf6c091d00f5f83a970fhttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/eade82324aede02920224f320bcb9198http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/eade82324aede02920224f320bcb9198http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/60089a8c97df9a68ba273edd3eb88e6chttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/60089a8c97df9a68ba273edd3eb88e6chttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/60089a8c97df9a68ba273edd3eb88e6chttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/60089a8c97df9a68ba273edd3eb88e6chttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/a6d06cb37d972e6efde9e6cbb6695a03http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/a6d06cb37d972e6efde9e6cbb6695a03http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/3b6a0874ba37a57c63212c7973e0dfb7http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/3b6a0874ba37a57c63212c7973e0dfb7http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/6df782948fedfbf042eb42a7cdd9a9e6http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/6df782948fedfbf042eb42a7cdd9a9e6http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/d53c8ead2b23800199762b6ff9ba7aefhttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/d53c8ead2b23800199762b6ff9ba7aefhttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/5aebea5eda3e4c51d2d9f87117defb95http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/5aebea5eda3e4c51d2d9f87117defb95http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/d96e3cbd65fe0786cbe6fcdee9cc7c90http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/d96e3cbd65fe0786cbe6fcdee9cc7c90http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/4bdd2bcef986359e3bda014bf5d7e883http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/4bdd2bcef986359e3bda014bf5d7e883http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/b08752d7180f5048a5bbbb4fcf3e2749http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/b08752d7180f5048a5bbbb4fcf3e2749http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/a03193be9314353cceefd80742b01913http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/a03193be9314353cceefd80742b01913http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/b7aa44eace75e0945460b466e5e5b15ahttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/b7aa44eace75e0945460b466e5e5b15ahttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/df878638c7ee109ede10937d6f989d14http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/df878638c7ee109ede10937d6f989d14http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/ae14a0fb47f38e0af86f9aa11bfd0019http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/ae14a0fb47f38e0af86f9aa11bfd0019http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/ae14a0fb47f38e0af86f9aa11bfd0019http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/df878638c7ee109ede10937d6f989d14http://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/b7aa44eace75e0945460b466e5e5b15ahttp://energy.opp.psu.edu/energy-programs/energy-consumption/university-park/up-building-type/resolveuid/a03193be9314353cceefd80742b01913http://energy.opp.psu.edu/energy-programs/energy-consumption/univers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Table 4.3 Current Green Power providers to Penn State
Renewable Energy Type Provider
Wind Energy Community Energy Inc.
Wind and Biomass Energy 3 Phases Energy Services
LIHI Hydro Energy Sterling Planet, Inc.
Penn State as of Jan 5 2010 is the 3rd
largest purchaser of Green Power among the Universities.The top two purchasers are University of Pennsylvaniaand Carnegie Mellon University.
Currently Penn State has only two onsite renewable energy systems producing electricity. One ofthem is a Solar PV system with capacity 2kW and the second one being a Wind system ofcapacity 1.7kW [5].
Table 4.4 Summary of Renewable Energy Systems installed on campus [5]
4.3 Pennsylvania Alternate Energy Portfolio Standards
The AEPS law requires EDCs (electric distribution companies) and EGSs (electric generationsuppliers) to supply 18.5 percent of electricity using alternative energy resources by 2021. Thepercentage of Tier I, Tier II and photovoltaic resources that must be included in sales to retailcustomers gradually increases over this period. By Jan. 1, 2008, the renewable resourcerequirement is estimated to be 1,215,822 MWHs, representing approximately 0.75 percent of theCommonwealths annual energy demand. By Jan. 1, 2021, AEPS will provide an estimated36,639,425 MWHs, or 18.5 percent of Pennsylvanias annual electric requirements [6] .
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Table 4.5 Overview of AEPS Percentage Sales Requirements
Tier I- sources include solar photovoltaic and solar thermal energy, wind power, low-impact hydropower,geothermal energy, biologically derived methane gas, fuel cells, biomass energy, and coal mine methane
Tier II- sources include waste coal, distributed generation systems, demand-side management, large-scalehydropower, municipal solid waste, generation of electricity utilizing by-products of the pulping process andwood manufacturing process including bark, wood chips, sawdust and lignin in spent pulping liquors; andintegrated combined coal gasification technology
It can be seen from the table that by the year 2021 an ambitious 0.5% of the total electricity
produced must be from Solar PV. In 2007 the solar PV in Pennsylvania produced a total of 756MWh [6]. By 2021 Solar PVs contribution needs to be 1,017,282MWh which means that theinstalled capacity has to increase by 1350 times.
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4.3.1 Feasibility study for Penn States Voluntary compliance of Solar PV standards
The Pennsylvania State University is not an EDC or an EGS. Hence it does not have to complywith Alternate Energy Portfolio Standards set forth by the state. However the goal of this projectis to investigate Penn States potential to voluntarily meet the solar PV standards by 2021.
Figure 4.3 Estimated 2007 Installed Plant Costs for Renewable Resources in PA(cents/kWh) [23]
In order for Penn State to meet these standards voluntarily, an estimated solar PV capacity of2.06 MW needs to be installed by 2021, which can provide upto 1575000 kWh annually which is0.5% of Penn States current consumption. This would entail an annual cost of $630000 as perthe costs shown in the figure 4.3. This does not include the installation costs.
As mentioned earlier the aim of the project is to check the technical and economical feasibility ofimplementing solar PV on University Park campus should Penn State make a voluntarycommitment to meet these standards in the future for their onsite generation of power.
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5. Solar Resource Assessment
Solar Resource information is used to estimate the amount of solar electricity that can begenerated in a given area. Solar Resource Assessment is a critical step in the design andsimulation of Photovoltaic systems and their interaction with the electric grid. Both historical and
forecasted solar resource data are available for power system planning and operations. Howeverfurther refining of techniques is required in order to forecast solar resources in the hourly or subhourly intervals at least one to three days in advance to support real-time power systemoperations. With high penetration of variable renewable energy, long-term solar resourceassessment data are required to support generation resource planning [7].
The Solar Resource Information can be obtained in different forms using various resources. Afew of them are
NREL Solar Maps
SMARTS (The Simple Model of the Atmospheric Radiative Transfer of Sunshine)
SURFRAD Data (SURFace RADiation Budget Measurement Network): to be used forPenn State.
TMY(Typical Meteorological Year) data:
Solar Radiation Models
5.1 NREL data - Solar Maps
Solar maps provide monthly and annual average daily total solar resource information on gridcells. They indicate the amount of insolation available to the photovoltaic panel that is orientedsouth and at an angle equal to the latitude of the panel location.
Light from the sun has two components, the direct and the diffuse (light that is reflected ofclouds, dust particles and other objects). The sum of these two components is the total radiationthat is incident on a solar collector. The solar maps presented here give us an annual estimate ofthe total radiation and direct radiation available. The availability of direct radiation determinesthe feasibility of concentrated solar systems as they utilize only the direct component of light.
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5.1.1 Photovoltaic Solar Resource in US(Total Radiation)
Fig 5.1 Annual Average Photovoltaic Solar Resource of the United States
It can be seen that Pennsylvania receives an annual average of 4-4.5 kWh/m2/day [8]. There is
general perception that the solar resource in Pennsylvania is insufficient. In order to dispel that
myth let us consider the solar resource for Germany, the world leader in PV market. It is around2.6 3.6 kWh/m2/day [9]. Freiburg, worlds first solar city, receives around 3 kWh/m2/day andhas an installed capacity of 3,200 kW (3.2 MW) in December 2003[10].Clearly Pennsylvaniareceives more global irradiation than Germany thereby dispelling the myth that solar resource forPV systems is not sufficient in Pennsylvania.
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It can be seen that Pennsylvania has relatively poor concentrated solar resource as compared toother states in the US. Pennsylvania receives between 3.2 - 3.5 kWh/m
2/day as compared to 5
8.3 kWh/m2/day that the south western part of US receives [10]. Northern States like Minnesota,North Dakota and Montana receive an annual average between 4-5 kWh/m2/day which is morethan what Pennsylvania receives.
5.2 SMARTS
The Simple Model of the Atmospheric Radiative Transfer of Sunshine (SMARTS) wasdeveloped by Dr. Christian Gueymard for NREL. SMARTS can be used to predict clear-skyspectral irradiances. SMARTS computes how changes in the atmosphere affect the distributionof solar power or photon energy for each wavelength of light.
It computes clear sky spectral irradiances including direct beam, circumsolar, hemisphericaldiffuse, and total on a tilted or horizontal receiver plane for specified atmospheric conditions.The main applications of SMARTS are the testing the performance of spectroradiometers,development reference spectra, establishment of uniform testing conditions for materialsresearch, optimization of daylighting techniques and verification of broadband radiation models.Researchers also use SMARTS in the fields of architecture, atmospheric science, photobiology,and health physics. SMARTS 2.9.2 is the basis for American Society of Testing and Materials(ASTM) reference spectra (ASTM G-173 and ASTM G-177) used for photovoltaic performancetesting and materials degradation studies [11].
However for PV system design and simulation we do not need the spectral irradiances but ratherthe global irradiance which is nothing but the integral of the individual spectral irradiances.Hence the SMARTS tool will not be employed for our PV System Design.
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5.3 SURFRAD Solar Radiation Network:
Hourly solar radiation data can be obtained from several solar radiation networks across theUnited States. Some of these networks are regional in scope, while others provide data on anational level.
Table 5.1 Solar Radiation Networks in United States [12]
These networks have a combined 53 measuring stations all over the United States [12]. Ourliterature survey revealed that the SURFRAD network has a station in Pennsylvania StateUniversity. The Penn State University SURFRAD station is located on the grounds of PSU'sagricultural research farm. It is in a broad Appalachian valley between Tussey and Bald EagleRidges, and is hosted by the Meteorology Department.
Show below are a few details of the station
Latitude: 40.72 degrees North
Longitude: 77.93 degrees West
Elevation: 376 meters
Time Zone: Local Time + 5 hours = UTC
Installed: June 1998
The SURFRAD Station records hourly solar radiation data that can be used for PV system designand Simulation. Applications of this data also include the usage as an input to the real-timesimulation model that needs to be developed after the actual installation of the PV system.Disparities between the physical system and the model can be identified and thereby leading toeventual improvement of the simulation model.
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5.4 TMY (Typical Meteorological Year) data
A typical meteorological year (TMY) data set provides designers and other users with areasonably sized annual data set that holds hourly meteorological values that typify conditions ata specific location over a longer period of time, such as 30 years. TMY data sets are widely used
by building designers and others for modeling renewable energy conversion systems [13].
TMY data can simply be defined as an average of meteorological data collected over a numberof years for a particular location. .However, a simple average of the yearly data underestimatesthe amount of variability, so the month that is most representative of the location is selected. Foreach month, the average radiation over the whole measurement period is determined, togetherwith the average radiation in each month during the measurement period. The data for the monththat has the average radiation most closely equal to the monthly average over the wholemeasurement period is then chosen as the TMY data for that month. The months are addedtogether to give a full year of hourly samples.
TMY: Derived from the 1952-1975 SOLMET/ERSATZ data base
TMY2:Derived from the 1961-1990 National Solar Radiation Data Base (NSRDB).TMY2 Data
is available for 239 US locations.
TMY3: Derived from the 1961-1990 and 1991-2005 National Solar Radiation Data Base (NSRDB)archives. TMY3 data is available for 1020 US locations.
The intended use for TMY data is computer simulations of solar energy conversion systems andbuilding systems. The TMY data represents typical and not extreme conditions and hence are notsuited for designing systems to meet the worst-case conditions occurring at a location [13]
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efficiency is around 10% [21]. Good results can be achieved in the laboratory on small-areacells, but achieving similar results reliably and repeatedly in commercial production on large-area modules is a major challenge. Although these cells are inexpensive, they dont useconsiderable part of solar spectrum because of band gap.
6.1.2.2 Thin polycrystalline silicon
There is good theoretical justification for using thin base layers in silicon solar cells because thedark saturation current decreases with decreasing base-layer thickness, leading to higher open-circuit voltage values for thin cells. There are other benefits to such thin cells. The diffusionlength needs to be only 50-80 m, so lower quality material can be used, and higher dopinglevels can be tolerated giving higher open-circuit voltage [22]. This is therefore a very promisingroute for the production of efficient cells at low cost. Efficiencies up to 16% have been observedin small-area cells [23]. The challenges of these cells are problems that occur during thechemical process their production.
6.1.2.3 Cadmium Telluride (CdTe)
CdTe cells are manufactured by depositing the absorbing layer of CdTe on a glass substrate witha transparent conductive oxide (TCO) layer as the front contact. The commercial efficiency ofthese modules is around 8.5-10% [23].
CdTe technology has the lowest production costs among the current thin-film modules and massproduction may help to further decrease the cost [24]. However, an important issue of debate isthe use of cadmium, which is a heavy metal. Research has shown that processing cadmium intoCdTe modules is not harmful.
6.1.2.4 Copper Indium Gallium Selenide (CIGS)
The active semiconductor material used is copper indium gallium diselenide. These cells arefabricated by initially coating a thin molybdenum layer on a glass substrate, and then sputteringthe individual elements as individual layers at room temperature, and then combine them to formCIGS by briefly heating to 500C [24]. The commercial efficiency is between 9 to 11% [23].
These cells are currently the most efficient of all thin-film technologies and lower costs inproduction can be expected with expansion in mass manufacturing
6.1.3 Concentrating Photovoltaic System (CPV)
Concentrating photovoltaic (CPV) systems use lenses or mirrors to focus and magnify sunlightonto high-efficiency solar cells. These mirrors or lenses are located between the sun and the solarcells. These solar cells are typically more expensive than conventional cells but CPV reduces thearea of solar cell while increasing its efficiency. Also, CPV provides some advantages such as nomoving parts and intervening heat transfer surface.
CPV technology however is only suitable for locations with high Direct Normal Irradiation(DNI). A recommendation for High Concentrated Photovoltaic (HCPV) is an annual average
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the manufacturing company and the reputation of their products. For instance, First Solar, amanufacturer of CdTe modules, is an industry leader and a very reputable company [29]. Wewill generally feel safer recommending their modules than a smaller start-up company with notrack record.
Table 6.1 Comparison of Silicon PV, Thin-film PV, and CPV
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7. Site Survey
Site Survey is the first and a critical step in PV system design. Improper site survey, for instance
improper shading analysis, can lead to the PV system working much below its rated power there
by lowering its capacity factor. Traditional method of a site survey is an onsite physical analysis
[30]. However it is impractical to conduct an onsite physical survey for all the buildings on the
University Park campus. We have thus indentified two alternate methods. First method is a two
stage process in which the first stage is the visual inspection of the rooftops using aerial images.
In this stage buildings with negligible usable area are eliminated. In stage two shading analysis is
done for all the selected buildings utilizing their blue prints and usable area determined. The
second method is Aerial Imaging. In this method an image processing software automatically
determines the usable area. Since this is an automated process it can be done for many buildings
in a short period of time and suitable for a site survey of University Park campus. The Aerial
Imaging technique is upto 97.8% accurate with the reference being the onsite physical analysis
[30]. Shown below are the pictures and results of a case study conducted for a school building inCalifornia using the Aerial Imaging technique [30].
Figure7.1ProcessedAerialImagesforperimeterdetection
Table7.1ComparisonofAerialImagingandphysicalsiteInspection
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8. Dynamic Simulation of PV systems
Dynamic Simulation is done to predict the performance of the designed PV systems. It allows usto check the load meeting capabilities of the PV systems in case of standalone systems and checkthe fraction of demand offset in case of grid-connected systems. Essential parameters such as
capacity factor, total output, and hourly variation of insolation can be calculated for the entireyear by the PV designers. These parameters play a vital role in the feasibility analysis of the PVproject.
Various simulation tools are currently available to perform PV simulation. Some of them areTRNSYS [31], RETScreen [32], PVSYST [33], PVSIM [34], PVFORM [35], PV f-Chart [36],ENERGY-10 PV [37], PVNet [38], PVSS [39], SOLCEL-II [40], Renew [41] and SimPhoSys[42].
We have selected TRNSYS for our purposes due its availability, ease of use and built in weatherdata. Developed correctly, TRNSYS models have proven to be in good agreement with measured
data [43]. Given below are the results of a TRNSYS simulation study that was performed for a13kW grid connected PV system in the Northern Ireland (latitude 54
o52N and longitude
6o17W). The predicted output of the TRNSYS model was compared to the performance data
measured from April 2001 to December 2003[43].
Figure 8.1 Comparison between predicted and measured MPP power for 7 days.
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9. Utility Interconnection
The use of Interactive distributed generation of electrical power is a very useful supplement to
traditional central power generation. Grid connected PV systems are becoming a popular choice
for distributed generation[27]; in fact a majority of the newly installed systems over the last
decade have been grid connected as shown in figure 9.1.
Connecting a PV system to the grid allows for two way interaction between the utility and the
PV system. Customers benefit from obtaining power to on-site loads and some backup power in
case of utility outage. For utilities, they can increase their capacity to serve customers without
building new power plants.
The electric utility system consists of hundreds or thousands of interconnected generators
operating in parallel. These generators must be synchronized with each other to prevent
damaging themselves. Synchronizing is the process of connecting a generator, in this case a PV
system, to an energized electrical system. This is an extremely critical process and it involvesprecisely matching the phase sequence, frequency, voltage, and phase balance of the PV system
to the rest of the electrical system [27].
Therefore, before installing a grid connected PV system, careful considerations must be made
with regards to the technical, procedural, and contractual requirements needed in making
interconnections with the grid utility. These considerations ensure the safety and reliability of the
connections. In addition, they also ensure that the connections do not adversely impact the rest of
the electricity distribution system. These requirements and issues are discussed in this section.
9.1 Issues with Grid connection
Electricity utilities are responsible for the safety and quality of supply to their customers. Themajor DC and grid connected issues are listed below
9.1.1 Power Quality
One of the most important technical issues of the grid connection of generation plants is the
Power Quality. For any grid-connected system, power factor and harmonic consideration are
important [44]. The power quality is influenced by the performance of the electrical generation
and distribution equipment, as well as electrical loads operating on the system.
Overvoltage is an important issue affecting power quality [45]. When installed PV systems feed
power to the utility grid, the electricity current flow reverses direction and this leads to an
increase in voltage. As a result of this increase in voltage, a condition known as overvoltage may
occur. Overvoltage can cause serious problems for utilities and consumers since electrical loads
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9.2 Interconnection Policies
This section covers the regulations and policies that must be met before a PV system can be
successfully commissioned and fully operational.
9.2.1 Pennsylvanias Net Metering Policy
In Pennsylvania, investor-owned utilities must offer net metering to residential customers that
generate electricity with systems up to 50 kilowatts (kW) in capacity; nonresidential customers
with systems up to three megawatts (MW) in capacity [47]; and customers with systems greater
than 3 MW but no more than 5 MW who make their systems available to the grid during
emergencies, or where a micro grid is in place in order to maintain critical infrastructure. Net
metering is available when any portion of the electricity generated is used to offset on-site
consumption (i.e., system size is not limited by the customer's on-site load).
Net metering is achieved using a single, bi-directional meter that can measure and record the
flow of electricity in both directions at the same rate. Net excess generation (NEG) is carried
forward and credited to the customer's next bill at the full retail rate. Customer-generators are
compensated for remaining NEG at the utility's "price-to-compare" at the end of the year. The
price-to-compare includes the generation and transmission components -- but not the distribution
component -- of a utility's retail rate. In order to reconcile net metering with Pennsylvania's
broader renewable energy goals, the "year" referenced above is defined to coincide with the
compliance year (June 1 - May 31) used for Pennsylvania's Alternative Energy Portfolio
Standard (AEPS)[47].
9.2.2 Public Utilities Regulatory Policy Act (PURPA)
PURPA was passed by the U.S congress in 1978 to help decrease U.S dependence on foreign oil
[27]. The legislation requires electric utilities to purchase power from independent power
producers, and also establish the technical requirements for their interconnection to the utility
system.
9.2.2.1 Qualifying Facility
A qualifying facility, as defined by PURPA, is a non-utility large-scale power producer that
meets the technical and procedural requirements for interconnection to the utility system. The
legislation mandates that utilities purchase power from these facilities at its avoided cost, whichis the cost the utility avoids by not generating the power itself.
9.2.2.2 Interconnection Agreements and Fees
Qualifying-facility agreement is a contract between a qualifying-facility and a utility that
establishes the terms for interconnection and the rates that apply. These agreements will include
the commitments regarding prices and expected levels of power generation.
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Interconnection agreement is a contractual agreement between a qualifying facility and an
electric utility that establishes the terms and conditions for the interconnection that include size
restrictions, liability insurance, and system maintenance.
Interconnection application fees are imposed in order to offset the additional costs of inspecting,
monitoring, billing and completing paperwork for interconnecting systems [47]. The agreementmay also include a schedule of fees for other services and equipment needed to interface the
utility with the PV system.
9.2.3IEEE 1547, Standards for Interconnecting Distributed Resources with Electric Power
Systems
The interconnection of distributed generation to the electric utility grid is governed by IEEE
1547, Standard for Interconnecting Distributed Resources with Electric Power Systems. This
standard of the Institute of Electrical and Electronics Engineers (IEEE) establishes uniform
criteria for safety, operation, performance, testing and maintenance of interconnected distributedgeneration systems.
IEEE 1547 Requirements
IEEE 1547 outlines numerous technical requirements for safely and reliably connecting
distributed generation to the electric utility grid [48]. These technical requirements include:
Voltage regulation
Power monitoring
Grounding
Synchronization Connection to network distribution systems
Back-feeds
Disconnecting means
Coordinated equipment ratings
Abnormal operating conditions
Power quality
Islanding
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10 Environmental Impact
10.1 Chemicals used in the Production of Photovoltaic Cells
The production of photovoltaic devices involves the use of a variety of chemical and materials.
The amounts and types of chemicals used will vary depending on the type of cell being
produced.
Table10.1.1 Chemicals and Materials Used in the Manufacturing Process of Various Photovoltaic Cells [49]
During the manufacturing process, a variety of acids and corrosive are used fairly large
quantities. These are hydrochloric acid, sulfuric acid, nitric acid, and hydrogen fluoride. These
chemicals used for cleaning of wafers or to remove impurities from raw semiconductormaterials. Etching compounds such as sodium hydroxide and cleaning compounds such as
trichloroethane and acetone also used in relatively large quantities [49].
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Hazards in PV manufacture differ for different thin-film technologies and deposition processes.
The main hazards associated with specific technologies are shown in the table below.
Table10.1.2. Major Hazards in PV Manufacturing [53]
10.2 CdTe Environmental Impact
Table10.2.1. CdTe, Cd and Cd(OH)2physical properties [50]
Compound T melting (0C ) T boiling (
0C ) Solubility (g/100cc) Toxic/Carcinogen
Cd 321 765 Insoluble yes
Cd(OH)2 300 - 2.6e-4 yes
CdTe 1041 - Insoluble ??
CdTes physical properties, including its extremely low vapor pressure and high boiling and
melting points, along with its insolubility in water, limit its mobility. CdTe is much more stable
than Cd and Cd(OH)2used in batteries [50]. The amount of Cd in CdTe solar cells is very small,
and could be reduced even further as the cells become thinner; a NiCd flashlight battery has
more Cd (7g) than a square meter of today's CdTe PV module [52].
The potential EHS risks related to the cadmium content of CdTe PV modules are; Cd mining,
CdTe PV manufacture, CdTe PV use and CdTe PV decommissioning. Cadmium is produced
primarily as a by-product of zinc production; also Tellurium is a by-product of copper mining.
The very thin layer of CdTe in PV modules is encapsulated between two protective sheets of
glass. As a result, the risk of health or environmental exposure in fires, from accidental breakage
or from leaching is almost non-existent [49, 50, 51]. The only environmental issue is what to do
with the modules about 30 years later, if they are no longer useful. PV industry is considering
recycling of these modules at the end of their useful life. Recycling will resolve any
environmental concerns.
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10.3 CdTe PV Module Recycling
Recycling of CdTe PV modules and manufacturing waste aims to optimize the separations and
recovery of glass, cadmium and tellurium while minimizing life-cycle emissions and energy use,
under the constraint of low cost. The major processes are:
Cleaning of glass from the metals and recycling of glass;
Separation of Te from Cd and other metals and recovery of Te for its value;
Recovery of Cd for re-use or effective sequestration [54].
Cd and Te can be effectively leached from fragments of PV modules with a dilute solution of
H2SO4and H2O2; this can be re-used with a small amount of H2O2make-up [55]. The recovery
of tellurium is 80% or better, and it can be sold as commercial grade (99.7% Te). The remaining
metals (e.g., Cd, Te, Sn, Ni, Al, Cu) are contained in a Cd-rich sludge used as feedstock for NiCd
batteries.
CdTe PV modules do not present any risks to health and the environment during their use, and
environmental benefits of recycling products provide savings in landfill space, energy, emissions
and raw materials [52,56].
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11. Site Selection and Building categorization
One of the important goals of our project is to estimate the solar PV potential of the rooftops of
buildings on the University Park campus. As described in the literature review the Aerial
Imaging method would have been ideal for University Park which has 657 buildings. However
the lack of availability of the required Aerial Imaging Software and the lack of expertise to
develop one has led us to use method one described in the literature review. This method has two
stages. In the first stage we used Bing maps to eliminate buildings with very little roof area to
implement solar PV at this stage. The remaining buildings were categorized into different tiers
based on their suitability to have solar PV installed on their rooftops. The categorization was
done based on parameters such as preplanned roof replacement, roof area, roof type, roof pitch
and orientation. The two parameters that are given highest priority are roof area and preplanned
roof replacement. For instance, buildings with large roof area and preplanned roof replacement
are categorized under Tier I as being most suitable for PV installations. Roof type also played an
essential role in the categorization in that buildings with metal roofs are not considered due tocomplexity of the mounting structures which will lead to higher costs. Similarly buildings with
horizontal roofs are given higher preference over those with a curvature. Sports buildings such as
the Holuba Hall and Track and field stadium that have large roof areas and curved metal roofs
are not considered. Most of the buildings on University Park campus are oriented in the same
direction hence orientation did not play a major role in this categorization. Shown below are
aerial images of buildings from each category.
Fig 11.1 Example of Tier I building- Intramural Building (courtesy Bing Maps)
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Fig 11.2 Example of Tier II building McCoy Natatorium (courtesy Bing Maps)
Fig 11.3 Example of Tier III building Wagner Building (courtesy Bing Maps)
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Table 11.1 Building Categorization (with Tier I being most suitable for solar PV)
TierI TierII TierIII TierIV
Recreation Hall
IntramuralBuilding
Eisenhower ParkingDeck
Eisenhower auditorium
McCoy Natatorium
Rec Hall
Research A,B and C
Greenberg Ice pavilion
White Building
The Penn Stater
Hammond Building
IST Building
Physical Plant building
Earth and Engineering sciencesbuilding
Wagner Building
Pond Laboratory
Agriculture engineeringbuilding
Shields Building
Multisport indoor facility
MRL building
Penn State Gym andbiomechanics lab
Transportation Institute
Land and water building
Thomas Building
Kern Building
Coal Utilization laboratory
StiedleBuilding
FenskeLab
BurrowesBuilding
WalkerBuilding
BuckoutLaboratory
JamesBuilding
TysonBuilding
HendersonNorth
andsouth
Etc.
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Figure 12.1: Shading areas from Greenberg Ice Pavilion
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Table12.1: Usable areas of buildings.
Building TotalArea(m2)UsableArea(m2)
(Dec21)
UsableArea(m2)
(June21)
IMBuilding
4998.06
4438.83
4192.22
RecHall 3925.274 2038.682 2702.947
GreenbergIcePavilion 3752 3325.93 3300
McCoyNatatorium 2000.84 1646.99 1594.54
White Building 2665.64 1279.56 1279.56
ResearchA,B,CBuildings 3776 3050.49 3052.67
EisenhowerAuditorium 2462.16 1525.97 1255.80
EisenhowerParking 5169.28 4511.28 4511.28
WagnerBuilding 1350.17 689.28 689.28
KernBuilding 2412.17 927.67 336.75
HammondBuilding 2760 1778 1710
ThomasBuilding 2060.61 1057.39 1263.39
ThePennStater 6178.74 4785.98 2695.03
Shields 1804.01 1472 1391.51
MRL 1985.14 1467 1666.30
OPP 1855 1510 1560
RecHall(smallbuilding) 791.65 590.23 590.23
EES
1600
705
728.97
WarwickLab 780 462.70 350.00
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13. PV System Design
13.1 Power Capacity Calculations
Solar PV potentials for various buildings have been calculated given the useful roof area for each
building. The calculations made are tabulated in table 13.5. A total of 3.56MW solar PV capacityhas been estimated for the selected buildings.
13.2 IM Building Design
We performed detailed roof top analyses of the selected buildings as shown in section 12.
However, we will use the IM building to illustrate our design approach since the system design is
very similar for all the buildings in this study.
13.3 System overview
The proposed design is a grid interactive photovoltaic (PV) system that works without a batterybackup. There is no need for a battery backup system since the electric grid will also supply
electricity. A general overview of what a functioning grid interactive system looks like is shown
in fig 13.1. The PV array and the inverter are the two most important components of this system
[27].
Fig 13.1 Block Diagram showing the system overview
13.3.1 Module Selection
The First Solar FS-277 Module was selected for this project. The FS-277 is a thin film cadmium
telluride (CdTe) module that produces 77.5 Wpand has an open circuit voltage (Voc) of 90.5 V
[61]. In our literature review, we outlined the reasons why we picked cadmium telluride modules
and these reasons include low cost, good efficiency, and the reliable brand strength of the
manufacturer, First Solar Inc.
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13.3.2 System size
The primary constraint for the size of the PV system was the available roof space. In our roof top
analysis, we calculated the amount of total roof space on the IM building. The shading analysis
was then performed to show the useable area for a PV installation.
This data was used to calculate the number of modules to be installed on the roof of the IM
building and its total power capacity.
Table 13.2 Roof area and Power capacity of IM building
Roof Area (m) Useable Area (m2) Number of Modules Power Capacity(kWp)
4998.06 4438.83 5640 437.1
13.3.3 Power Conditioning Unit (PCU)
The power conditioning unit performs power processing functions such as rectification,
transformation, and DC-DC conversion. It is also responsible for inverting the DC current
produced by the PV array to AC current used by the loads [27].
The PV capacity for the IM building is rated at approximately 437 kWp; hence the chosen PCU
must have a greater power rating. We selected the PowerGate Plus 500 kWPCU designed by
Satcon. This device meets all the required standards such as UL 1741 and IEEE 929 [62]. A
more detailed explanation of the implications of these standards can be seen in the literary
review. It should be noted that the PCU is not noise free and it is best mounted in an area where
noise is not a serious issue.
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Table 13.3 Important Parameters of the PCU
13.3.4 Array Configuration
The next step after selecting an ideal power conditioning unit and PV modules is to decide the
best way to assemble the PV array. NEC Table 690.7 requires division of the maximum input
voltage of the PCU by 1.13 to correct for the -10C input temperature [60]. Thus, the maximum
VOCof the PV array is limited to 531 V in order to keep the PV array output voltage below 600
V. In addition, short circuit current (ISC) of the arraymust be limited so that 1.25 ISC is less than
the PCU rated input current. Thus the ISC should be less than 1302 A.
Using this information, 1128 strings or source circuits can be connected with 5 modules
connected in series for every string, giving a total voltage of 452.5 V. The 1128 strings can be
connected in parallel using panel combiner boxes. The output of the combiner boxes can be
fused and connected as an input to the PowerGate Plus 500 kWPCU. A revenue grade meter
should be used to monitor the PCU and the main power distribution center. In addition, the
modules can be mounted securely in a south-facing direction at the angle of latitude of state
college (40.7).
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Table 13.5 Power capacity of selected buildings.
Building Total Area(m2) PV capacity (kW )
Rec Hall 3925.274 266.4
Greenberg Ice Pavilion 3752 369.8
McCoy Natatorium 2000.84 162.3
White Building 2665.64 124.1
Research A,B,C Buildings 3776 300.8
Eisenhower Auditorium 2462.16 150.4
Eisenhower Parking 5169.28 509.4
Wagner Building 1350.17 67.9
Kern Building 2412.17 91.4
Hammond Building 2760 175.3
Thomas Building 2060.61 124.5
Penn Stater 6178.74 471.7
Shields 1804.01 145.1
MRL 1985.14 164.2
OPP 1855 153.7
EES 1600 71.8
Warwick Lab 780 45.6
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Table 14.1 Module Parameters used for simulation (source: FS 277 data sheet)
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14.2 Results and Discussion
A PV system, designed for the Intramural Building, was developed in TRNSYS and itsperformance was simulated. Critical parameters such as power at maximum power point(operational point on the IV curve of PV module at which maximum power is delivered) and
capacity factor (The ratio of the average load on (or power output of) an electricity generatingsystem to the capacity rating of the system over a specified period of time) were calculated andare presented below. Plots for available Incident Radiation for the months of June and Decemberhave been attached in the Appendix.
14.2.1 Power at Maximum Power Point:
Predicted Performance of the PV system Intramural Building (437.6 kW)
Fig 14.3 Power Output of the PVsystem for a typical year
The performance of the PV system for a typical year in State College has been predicted. As
expected the PV system reaches close to its rated capacity in the summer months hitting a
maximum of 424 kW on June 8th. The months of June and July had capacity factors of 16.9%
and 15.8% respectively. During the winter months the output dropped considerably with capacity
factors as low as 2.8% and 1.7% for the months of November and December respectively.
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Predicted Performance of the PV system Intramural Building (437.6kW)
Fig 14.5 Power Output of the PVsystem for the month of June
Predicted Performance of the PV system Intramural Building (437.6kW)
December
Fig 14.4 Power Output of the PVsystem for the month of December
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The power output for a typical day of each month has been calculated. The 15th day of each
month is assumed to be a good representative of the month and hence been selected as the typical
day. Some of the months have been omitted to avoid clustering of the plot.
5.00E+01
0.00E+00
5.00E+01
1.00E+02
1.50E+02
2.00E+02
2.50E+02
3.00E+02
3.50E+02
4.00E+02
4.50E+02
0 5 10 15 20 25 30
PoweratM
aximumpowerpoint(kW)
Houroftheday(hr)
PoweratMaximumpowerpointforatypicaldayofeachmonth
February
March
April
May
July
September
October
November
December
Fig 14.7 Power at maximum power point for a typical day of each month
14.2.2 Capacity Factor:
The capacity factor for the PV system was calculated to be 9.7% much lower than the 13.5%
which is the case for most PV systems in the northeastern region of the U.S [65]. Due to this
considerable discrepancy in the value of capacity factor, its usage was not recommended for the
subsequent financial analysis.
Table 14.1 Capacity factors for a typical year
Month Capacity Factor
January 0.026
February 0.053March 0.087
April 0.134
May 0.153
June 0.169
July 0.158
August 0.147
September 0.100
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October 0.065
November 0.028
December 0.017
14.2.3 Solar Fraction:
Solar Fraction is the ratio of amount of energy provided by the solar PV system to the total
energy consumed by the building. In this section we have used the energy consumption data of
the Rec Hall as the hourly consumption data is not available for the Intramural Building. The PV
system designed for Rec Hall has a rated capacity of 267kW. In July 2009 a total of 79905.6
kWh was consumed by the Rec Hall building. The average power consumed was 107.40kW with
the minimum and maximum being 50kW and 156kW respectively. The output of the PV system
designed for Rec Hall is compared to the energy consumption of the Rec Hall as shown below.
The energy produced by the PV system for a typical July month is 32719.33kWh. The fraction of
the buildings electricity demand that can be met by the PV system for the month of July is40.9%.
50
0
50
100
150
200
250
300
0 100 200 300 400 500 600 700 800
Power(kW)
Julyhrs
LoadandPoweroutputcomparisonforPVsystemdesignedforRecHall
July
PowerConsumptionRecHall(July2009) PVpoweroutputRecHall(july)
Fig 14.8 Rec Hall Energy consumption and PV system output comparison for July
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In December 2009 a total of 70055.04 kWh was consumed by the Rec Hall. The average power
consumed was 94.16kW with the minimum and maximum being 46kW and 173kW respectively.
The PV systems energy production for a typical December month is 3423.59 kWh. The fraction
of the buildings electricity demand met by the PV system for the month of December was a
meager 4.89%.
20
0
20
40
60
80
100
120
140
160
180
200
0 100 200 300 400 500 600 700 800
Power(k
W)
Decemberhrs
LoadandPoweroutputcomparisonforPVsystemdesignedforRecHall
December
PowerConsumption
Rec
Hall
(Dec
2009) PV
power
output
Dec
Fig 14.9 Rec Hall Energy consumption and PV system output comparison for December
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o Inflation rateo Real discount rate
15.2 Summary of major assumptions
Total installed cost per capacity = 7.2 $/Wdc [66]
Break down of installed cost [67]
o 60 % PV module cost
o 20% inverter cost
o 15% BOS cost
o 5% installation cost
Operation and maintenance cost 25
Electricity utility rate = 0.09 $/KWh [71]
Solar Renewable Energy Certificate (SREC) price = 0.30$ KWh [70]
30 year project life time
o 3% inflation rate [69]
o 6% real discount rate [68]
10 year debt term
o 7.0 % loan rateo 55% debt ratio
Penn state has a tax exempt status and therefore, taxes or tax based incentives are not
reflected in the economic analysis [OPP]
15.3 Model Limitations
PV array shading doesnt affect the system output
Fixed SREC price through the life of the project
Revenue generated through sale of SRECs is calculated annually
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Costs Base Case Reduced Costs Case
Total Installed Cost per Capacity ($/W) 7.2 5.2
Module Cost ($) 1,761,510 1,265,310
Inverter Cost ($) 587,170421770
BOS Cost ($) 440,378316,327
Install Cost ($) 146,793105,442
Contingency Cost ($) 29,358.5021088.5
Present Value of O and M ($) 148,734106,845
Table 15.1 Comparing Base Case and Reduced Costs Case, IM Building
I
Annual Energy (kWh) 457,587.80 457,587.80 kWh
LCOE(nom) 39.58 20.96 /kWh
LCOE(real) 29.58 15.67 /kWh
Net Present Value (-1,186,944.88) (-394612.56) $
Payback 18.56 13.04 years
Capacity Factor (%) 12.6% 12.6%
Table 15.2 Output parameters for IM building
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Figure: Levelized Cost of Energy for IM Building (base case) *w/o incentive ignores the SREC price
Figure 15.2 After Tax Cash flow, IM Building (base case)
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15.4 Sensitivity Analysis
A sensitivity analysis was performed to indicate the degree to which the economics of the projectwere affected given varying costs and discount rates.
Figure 15.3 Sensitivity Analysis on NPV, IM Building (base case)
Figure 15.4 Sensitivity Analysis on LCOE, IM Building (base case)
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16. Emission Analysis
16.1 Life Cycle CO2Emission Analysis
A full CO2-balance within the life-cycle of a PV-system requires examination of the CO2sinks
and sources at the location and under the conditions of production, during transport, installationand operation, as well as the site of recycling [72].
In most cases the use of renewable energies such as PV reduces the specific carbon dioxideemissions of a country considerably. To find out the exact amount of reduction, a detailed carbondioxide balance of the entire life-cycle of PV-power plants, including production, transportinstallation, operation, dismantling, was set up [73].
Table16.1 Simplified life cycle material and energy usage to produce one m2of CdTe module on the basisof 9% conversion efficiency [73]
Fthenakis et al (2005) investigated the life cycle impact metrics with software Simapro.Commercial databases (e.g., Franklin, U.S. Input-Output, Ecoinvent and ETH-ESU) were used tocalculate emissions and energy consumptions that were not provided by suppliers. The life cycleenergy demand is determined from the Life Cycle Inventory (LCI) in Table10.4.1 along with thematerials and energy databases in Simapro. The life cycle energy from each stage is convertedfrom thermal, electrical, and feedstock energy to primary energy according to the conversionefficiencies described in those materials and energy databases, and then aggregated across stagesinto the one number. The materials production stage (cell materials, encapsulations) accounts for35%, the module manufacturing stage (electricity, consumables, chemicals, and office supplies)64%, and the transportation stage 1% of the life cycle primary energy demand respectively. The
electricity demand during the CdTe film deposition accounts for the greatest primary energy use(84%) during the module manufacturing stage, while encapsulation materials including glass andEVA (Ethyl Vinyl Acetate), dominate the energy requirement (94%) during the materialsproduction stage [73].
According to Fthekins et al calculations, the final number that they found with Simapro softwareis 1200 MJ/m2 =333 kWh/m2. This is the amount of energy needed to produce 1m2 of CdTe
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module. These calculations are based on a 9% efficiency, 1800 kWh/ m2/yr of solar irradiation,and 30 years lifetime.
Figure16.1 Breakdown of life cycle energy demand during the materials production, manufacturing, andtransportation stages of the CdTe life cycle [73].
The energy payback time is defined as the time period for a PV system to generate the same
amount of energy used to produce the PV system. After this calculation our system energypayback time is found to be 2.35 years.
Fthenakis et al estimate 18 g CO2-eq/kWh for the CdTe life cycle stages investigated is asignificant improvement compared with crystalline Si modules which currently dominate rooftopapplications [73]. We consider this number for our system CO2emission calculations.PV modulepower output degrades over time. Several mechanisms contribute to the degradation, and degreeof degradation varies between module technologies. Also, the rate of the degradation changesover time. We assumed two percent degradation per year and used this assumption for emissioncalculations [74, 75] .
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Table16.2 Life cycle emission analysis for selected building
Buildings Names CO2Emission DuringProduction
(tons CO2 )
CO2EmissionReduction DuringOperation
(tons CO2 )
Net Life Cycle CO2Emission Reduction
(tons CO2 )
IM Building 1273.48 12282.03 11008.55
Rec Hall 775.47 7479.57 6704.10
McCoy Nat 472.51 4557.22 4084.72
Research A,B and C 875.79 8446.87 7571.08
Hammond 510.21 4920.53 4410.32
Greenberg 1076.54 10383.75 9307.21
Wagner 197.75 1907.36 1709.61
Kern Building 266.14 2568.12 2301.98
Eisenhower Parking 1483.06 14302.92 12819.87
Wartik Lab 132.75 1280.66 1147.91
OPP building 447.56 4316.54 3868.97
EES building 209.14 2016.35 1807.21
Shields 422.32 4073.57 3651.25
White Building 361.36 3485.47 3124.11
EisenhowerAuditorium
437.81 4223.44 3785.63
Penn Stater 1373.10 13242.52 11869.41
Thomas Building 362.47 3495.02 3132.56
MRL 478.07 4613.99 4135.92
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0
2000
4000
6000
8000
10000
12000
14000
LifeCycleCO2Reduction(to
nsCO2)
IMBuilding
RecH
all
McCo
yNat
Rese
arch
A,B
and C
Hammon
d
Greenb
erg
Wag
ner
Kern
Building
Eise
nhow
erPa
rking
Wartik
Lab
OPPbu
ilding
EESbu
ilding
Shiel
ds
White
Buil
ding
Eise
nhow
erAud
Penn
Stat
er
Thom
asBuildi
ngMR
L
Figure16.2 Life cycle CO2emission reduction analysis for selected buildings
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16.2 Cadmium Emission Analysis:
Figure16.3 Life cycle atmospheric Cd emissions of the four PV modules, coal, natural gas, oil, nuclear
and average electricity-production [76].
It can be seen from the figure above that the CdTe PV cell, when it replaces coal-burning for
electricity generation, will prevent Cd emissions in addition to preventing large quantities of
CO2, SO2, NOx, and particulate emissions. The direct Cd emissions during the life-cycle of CdTePV modules are much smaller than those from generating the electricity used in producing these
same modules [76].
Thus, when CdTe displaces coal, it displaces 3.4 g of Cd emissions per GWh produced, and
likewise, for heavy-oil, it displaces 44.0 g Cd/GWh. According to these numbers when we
compare our PV system Cd emission versus coal power plant, we can easily see how CdTe PV
cells produce little amount of Cd emission.
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0
0.5
1
1.5
2
2.5
3
LifeCycleCdEmission
tons/MWh
IMBuildin
g
RecH
all
McC
oyNat
ResearchA
,BandC
Ham
mond
Gree
nberg
Wag
ner
KernBuildin
g
Eisenh
owerP
arkin
g
Wartik
Lab
OPPbu
ilding
EES
building
Shiel
ds
WhiteBuildin
g
Eisenho
werA
ud
Pen
nStat
er
Thomas
Buildin
gMR
L
CdTe PV Cell Coal Power Plant
Figure16.4 Comparison of CdTe PV cell life Cycle Cd Emission and Coal Power Plant Life Cycle Cd
Emission
CdTe PV systems require less energy input in their production than other commercial PV
systems, and less energy translates to lower emission of heavy metals (including Cd), as well as
SO2, NOx, and CO2 in the CdTe cycle than in the cycles of the other commercial PVtechnologies. In any case, emissions from any type of PV system are expected to be lower than
those from conventional energy systems because PV does not require fuel to operate [76, 77]. PV
technologies provide the benefits of significantly curbing air emissions harmful to human and
ecological health.
Although the EPBT of CdTe PV is much lower than that of the other PV systems, its electrical
conversion efficiency was the lowest in the group. Life cycle emission analysis considering both
production and operational mode of the PV system revealed a net reduction in carbon dioxide
emissions.
Our system EPBT time was 2.35 years. Highest life cycle CO2 emission reduction was
calculated to be 11,869.41, 11,008.55, and 9,307.21 tons of CO2 for Penn Stater, IM building,
and Greenberg Ice Pavilion, respectively.
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17. Conclusions
Our study revealed that the University Park campus has a total solar PV total potential of at least
3.56 MW. There is a potential for solar PV to provide upto 3939.57MWh annually which is
equal to 3939 S-RECs. This is equivalent to around 4.7% of the green power that Penn State
purchases and 0.94% of the current total electricity demand. Pennsylvanias Alternate Energy
Portfolio Standards require all EDCs (electric distribution companies) and EGSs (electric
generation suppliers) to provide 0.5% of their power through solar PV by the year 2020. Penn
State though not an EDC or EGS has the potential to meet this standard should it make a
voluntary commitment (assuming the electricity demand remains the same). However for
3.56MW of solar PV to be installed we need at least 18 buildings from Tier I and Tier II
categories. Our site survey has revealed that the Rec Hall and the Intramural Building are the
best candidates for immediate implementation. With a combined capacity of 704kW they
produce upto 779 MWh annually.
The TRNSYS simulation showed the capacity factor of a PV system in State College to be 9.7%
which is significantly less than the 13.5% for most PV systems in the northeastern region of the
U.S. Hence the need to improve the TRNSYS model so that it is in agreement with the literature.
The TRNSYS model can be further improved by utilizing State College weather data which is
currently not available in the TMY 2 data sets but will be made available through the TMY 3
data sets.
As part of the financial analysis two economic scenarios were compared by varying the total
installed cost per capacity. Both the scenarios gave a negative NPV (net present value) which
means that the project is not economically feasible however the effect on payback period was
noticeable which was shortened by 5 years in one case. The SREC price of 0.30$/KWh is not
even close to the nominal LCOE price of 0.39$/KWh and for the overall economic calculations,
the total installed cost per capacity remained at 7.2$/W.
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18. Appendix A
A:Energy to produce of CdTe module for one building.
333kWh/m2: Energy to produce one m2of CdTe module.Fthenakis et al. (2005) found this
number with Simapro Software.
333
1000
B:CO2emission during usage of energy to produce CdTe PV module
0.941 tons CO2/MWh : Energy information, EIA (2009)
0.941
0.98
0.018
C:Life cycle CO2reduction during operation for 30 years
We assume that regredation is 2%
D: CO2emission during operation
18 g/kWh emission for the CdTe life cycle. Fthenakis et al. (2005) found this number with
Simapro Software.
Net Life Cycle CO2 Reduction=C-D-B
E: Cd Emission for CdTe PV cell for 30 year life time
0.3 g/GWh : Production of life cycle atmospheric Cd emission for CdTe PV cell. (Fthenakis et
al. 2006)
E= Power Output(MWh) * 0.3/1000 (tons/MWh)
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F: Life cycleCd emission for coal power plant
3.7 g/GWh: Production of life cycle atmospheric Cd emission for coal power plant. (Fthenakis et
al. 2006)
F= Power Output(MWh) * 3.7/1000 (tons/MWh)
Energy Payback Time (EPBT)= (E mat+ E manuf + E trans)/E annual
E mat = Primary energy required to produce materials comprising CdTe PV module
E manuf = Primary energy required to manufacture CdTe PV module
E trans = Primary energy required to transport materials for producing and manufacturing
E annual = Annual electricity generation primary energy units
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19. APPENDIX B
Incident Radiation (W/m2) for a typical month of June
Fig 1 Incident Radiation (W/m2) for the month of June
Incident Radiation (W/m2) for a typical month of December
Fig 2 Incident Radiation (W/m2) for the month of December
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